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An autoencoder model is trained on a large dataset of facial images. During each training step, a clean image (x) is taken, a random rectangular section of it is completely blacked out to create a corrupted version (~x), and the model is tasked with reconstructing the original, clean image (x) from the corrupted input (~x). Which of the following best explains what the model must learn about the data distribution to succeed at this specific task?

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Updated 2025-10-06

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